MIT15.084JS04
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- Topics
- unconstrained and constrained optimization, unconstrained and constrained optimization, Lagrangean relaxation, generalized programming, Newton's method, conditional gradient and subgradient optimization, linear and quadratic programming, lagrange and conic duality theory, interior-point algorithms and theory, semi-definite programming, Algorithmic methods include steepest descent, interior-point methods and penalty and barrier methods, 15.084J, 6.252J, 15.084, 6.252
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- 2.0G
This course introduces students to the fundamentals of nonlinear optimization theory and methods. Topics include unconstrained and constrained optimization, linear and quadratic programming, Lagrange and conic duality theory, interior-point algorithms and theory, Lagrangian relaxation, generalized programming, and semi-definite programming. Algorithmic methods used in the class include steepest descent, Newton's method, conditional gradient and subgradient optimization, interior-point methods and penalty and barrier methods.
- Addeddate
- 2011-02-11 13:23:10
- Identifier
- MIT15.084JS04
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